Plausibility Verification For 3D Object Detectors Using Energy-Based
Optimization
- URL: http://arxiv.org/abs/2211.05233v1
- Date: Wed, 2 Nov 2022 15:35:16 GMT
- Title: Plausibility Verification For 3D Object Detectors Using Energy-Based
Optimization
- Authors: Abhishek Vivekanandan, Niels Maier, J. Marius Zoellner
- Abstract summary: This work aims to verify 3D object proposals from MonoRUn model by proposing a plausibility framework.
We also employ a novel two-step schema to improve the optimization of the composite energy function representing the energy model.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Environmental perception obtained via object detectors have no predictable
safety layer encoded into their model schema, which creates the question of
trustworthiness about the system's prediction. As can be seen from recent
adversarial attacks, most of the current object detection networks are
vulnerable to input tampering, which in the real world could compromise the
safety of autonomous vehicles. The problem would be amplified even more when
uncertainty errors could not propagate into the submodules, if these are not a
part of the end-to-end system design. To address these concerns, a parallel
module which verifies the predictions of the object proposals coming out of
Deep Neural Networks are required. This work aims to verify 3D object proposals
from MonoRUn model by proposing a plausibility framework that leverages cross
sensor streams to reduce false positives. The verification metric being
proposed uses prior knowledge in the form of four different energy functions,
each utilizing a certain prior to output an energy value leading to a
plausibility justification for the hypothesis under consideration. We also
employ a novel two-step schema to improve the optimization of the composite
energy function representing the energy model.
Related papers
- Integrity Monitoring of 3D Object Detection in Automated Driving Systems using Raw Activation Patterns and Spatial Filtering [12.384452095533396]
The deep neural network (DNN) models are widely used for object detection in automated driving systems (ADS)
Yet, such models are prone to errors which can have serious safety implications.
Introspection and self-assessment models that aim to detect such errors are therefore of paramount importance for the safe deployment of ADS.
arXiv Detail & Related papers (2024-05-13T10:03:03Z) - Gaussian Mixture Models for Affordance Learning using Bayesian Networks [50.18477618198277]
Affordances are fundamental descriptors of relationships between actions, objects and effects.
This paper approaches the problem of an embodied agent exploring the world and learning these affordances autonomously from its sensory experiences.
arXiv Detail & Related papers (2024-02-08T22:05:45Z) - Physics-Informed Convolutional Autoencoder for Cyber Anomaly Detection
in Power Distribution Grids [0.0]
This paper proposes a physics-informed convolutional autoencoder (PIConvAE) to detect stealthy cyber-attacks in power distribution grids.
The proposed model integrates the physical principles into the loss function of the neural network by applying Kirchhoff's law.
arXiv Detail & Related papers (2023-12-08T00:05:13Z) - Ring-A-Bell! How Reliable are Concept Removal Methods for Diffusion Models? [52.238883592674696]
Ring-A-Bell is a model-agnostic red-teaming tool for T2I diffusion models.
It identifies problematic prompts for diffusion models with the corresponding generation of inappropriate content.
Our results show that Ring-A-Bell, by manipulating safe prompting benchmarks, can transform prompts that were originally regarded as safe to evade existing safety mechanisms.
arXiv Detail & Related papers (2023-10-16T02:11:20Z) - Uncertainty-Aware AB3DMOT by Variational 3D Object Detection [74.8441634948334]
Uncertainty estimation is an effective tool to provide statistically accurate predictions.
In this paper, we propose a Variational Neural Network-based TANet 3D object detector to generate 3D object detections with uncertainty.
arXiv Detail & Related papers (2023-02-12T14:30:03Z) - GLENet: Boosting 3D Object Detectors with Generative Label Uncertainty Estimation [70.75100533512021]
In this paper, we formulate the label uncertainty problem as the diversity of potentially plausible bounding boxes of objects.
We propose GLENet, a generative framework adapted from conditional variational autoencoders, to model the one-to-many relationship between a typical 3D object and its potential ground-truth bounding boxes with latent variables.
The label uncertainty generated by GLENet is a plug-and-play module and can be conveniently integrated into existing deep 3D detectors.
arXiv Detail & Related papers (2022-07-06T06:26:17Z) - Exploring the Trade-off between Plausibility, Change Intensity and
Adversarial Power in Counterfactual Explanations using Multi-objective
Optimization [73.89239820192894]
We argue that automated counterfactual generation should regard several aspects of the produced adversarial instances.
We present a novel framework for the generation of counterfactual examples.
arXiv Detail & Related papers (2022-05-20T15:02:53Z) - Suspected Object Matters: Rethinking Model's Prediction for One-stage
Visual Grounding [93.82542533426766]
We propose a Suspected Object Transformation mechanism (SOT) to encourage the target object selection among the suspected ones.
SOT can be seamlessly integrated into existing CNN and Transformer-based one-stage visual grounders.
Extensive experiments demonstrate the effectiveness of our proposed method.
arXiv Detail & Related papers (2022-03-10T06:41:07Z) - Probabilistic Approach for Road-Users Detection [0.0]
One of the major challenges in state-of-the-art deep-learning based object detection are false positives which occur with overconfident scores.
This paper proposes an approach to alleviate the problem of overconfident predictions by introducing a novel probabilistic layer to deep object detection networks in testing.
It is demonstrated that the proposed technique reduces overconfidence in the false positives without degrading the performance on the true positives.
arXiv Detail & Related papers (2021-12-02T16:02:08Z) - Inter-Domain Fusion for Enhanced Intrusion Detection in Power Systems:
An Evidence Theoretic and Meta-Heuristic Approach [0.0]
False alerts due to/ compromised IDS in ICS networks can lead to severe economic and operational damage.
This work presents an approach for reducing false alerts in CPS power systems by dealing with uncertainty without prior distribution of alerts.
arXiv Detail & Related papers (2021-11-20T00:05:39Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.